4.5 Article

Multistage mixed precision iterative refinement

Journal

Publisher

WILEY
DOI: 10.1002/nla.2434

Keywords

adaptive algorithms; GMRES; iterative refinement; mixed precision

Funding

  1. U.S. Department of Energy
  2. Univerzita Karlova v Praze
  3. Charles University [PRIMUS/19/SCI/11, UNCE/SCI/023]
  4. Exascale Computing Project [UNCE/SCI/023, 17-SC-20-SC]

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The study demonstrates that different mixed-precision iterative algorithms for solving linear systems can achieve good balance between performance and accuracy. By combining different precision combinations and algorithms in a multi-stage approach, usability and convergence are further improved.
Low precision arithmetic, in particular half precision (16-bit) floating point arithmetic, is now available in commercial hardware. Using lower precision can offer significant savings in computation and communication costs with proportional savings in energy. Motivated by this, there has been a renewed interest in mixed precision iterative refinement schemes for solving linear systems Ax=b, and new variants of GMRES-based iterative refinement have been developed. Each particular variant with a given combination of precisions leads to different condition number-based constraints for convergence of the backward and forward errors, and each has different performance costs. The constraints for convergence given in the literature are, as an artifact of the analyses, often overly strict in practice, and thus could lead a user to select a more expensive variant when a less expensive one would have sufficed. In this work, we develop a multistage mixed precision iterative refinement solver which aims to combine existing mixed precision approaches to balance performance and accuracy and improve usability. For a user-specified initial combination of precisions, the algorithm begins with the least expensive approach and convergence is monitored via inexpensive computations with quantities produced during the iteration. If slow convergence or divergence is detected using particular stopping criteria, the algorithm switches to use a more expensive, but more reliable variant. A novel aspect of our approach is that, unlike existing implementations, our algorithm first attempts to use stronger GMRES-based solvers for the solution update before resorting to increasing the precision(s). In some scenarios, this can avoid the need to refactorize the matrix in higher precision. We perform extensive numerical experiments on a variety of random dense problems and problems from real applications which confirm the benefits of the multistage approach.

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